Londonchiropracter.com

This domain is available to be leased

Menu
Menu

Humans v AI: We found out who’s better at making money

Posted on February 3, 2022 by admin

Artificial intelligence (AI) has now closely matched or even surpassed humans in what were previously considered unattainable areas. These include chess, arcade games, Go, self-driving cars, protein folding, and much more. This rapid technological progress has also had a huge impact on the financial services industry. More and more CEOs in the sector declare (explicitly or implicitly) that they run “technology companies with a banking license”.

There is also a rapid emergence and growth of the financial technology industry (fintech), where technology startups increasingly challenge established financial institutions in areas such as retail banking, pensions. or personal investments. As such, AI often appears in behind-the-scenes processes such as cybersecurity, anti-money laundering, know-your-client checks, or chatbots.

Among so many successful cases, one seems conspicuously absent: AI making money in financial markets. While simple algorithms are commonly used by traders, machine learning or AI algorithms are far less usual in investment decision-making. But as machine learning is based on analyzing huge data sets and finding patterns in them, and financial markets generating enormous amounts of data, it would seem an obvious match. In a new study, published in the International Journal of Data Science and Analytics, we have shed some light on whether AI is any better than humans at making money.

Some specialist investment companies called quant (which stands for ‘quantitative’) hedge funds declare that they employ AI in their investment decision-making process. However, they do not release official performance information. Also, despite some of them managing billions of dollars, they remain niche and small relative to the size of the larger investment industry.

On the other hand, academic research has repeatedly reported highly accurate financial forecasts based on machine learning algorithms. These could in theory translate into highly successful mainstream investment strategies for the financial industry. And yet, that doesn’t seem to be happening.

What is the reason for this discrepancy? Is it entrenched manager culture, or is it something related to practicalities of real-world investing?

AI’s financial forecasts

We analyzed 27 peer-reviewed studies by academic researchers published between 2000 and 2018. These describe different kinds of stock market forecasting experiments using machine learning algorithms. We wanted to determine whether these forecasting techniques could be replicated in the real world.

Our immediate observation was that most of the experiments ran multiple versions (in extreme cases, up to hundreds) of their investment model in parallel. In almost all the cases, the authors presented their highest-performing model as the primary product of their experiment – meaning the best result was cherry-picked and all the sub-optimal results were ignored. This approach would not work in real-world investment management, where any given strategy can be executed only once, and its result is unambiguous profit or loss – there is no undoing of results.

Running multiple variants, and then presenting the most successful one as representative, would be misleading in the finance sector and possibly regarded as illegal. For example, if we run three variants of the same strategy, with one losing -40%, the other one losing -20%, and the third one gaining 20%, and then only showcase the 20% gain, clearly this single result misrepresents the performance of the fund. Just one version of an algorithm should be tested, which would be representative of a real-world investment setup and therefore more realistic.

Models in the papers we reviewed achieved a very high level of accuracy, about 95% – a mark of tremendous success in many areas of life. But in market forecasting, if an algorithm is wrong 5% of the time, it could still be a real problem. It may be catastrophically wrong rather than marginally wrong – not only wiping out the profit but the entire underlying capital.

We also noted that most AI algorithms appeared to be “black boxes”, with no transparency on how they worked. In the real world, this isn’t likely to inspire investors’ confidence. It is also likely to be an issue from a regulatory perspective. What’s more, most experiments did not account for trading costs. Though these have been decreasing for years, they’re not zero, and could make the difference between profit and loss.

None of the experiments we looked at gave any consideration to current financial regulations, such as the EU legal directive MIFID II or business ethics. The experiments themselves did not engage in any unethical activities – they did not seek to manipulate the market – but they lacked a design feature explicitly ensuring that they were ethical. In our view, machine learning and AI algorithms in investment decision-making should observe two sets of ethical standards: making the AI ethical per se, and making investment decision-making ethical, factoring in environmental, social, and governance considerations. This would stop the AI from investing in companies that may harm society, for example.

All this means that the AIs described in the academic experiments were unfeasible in the real world of the financial industry.

Are humans better?

We also wanted to compare the AI’s achievements with those of human investment professionals. If AI could invest as well as or better than humans, then that could herald a huge reduction in jobs.

We discovered that the handful of AI-powered funds whose performance data were disclosed on publicly available market data sources generally underperformed in the market. As such, we concluded that there is currently a very strong case in favor of human analysts and managers. Despite all their imperfections, empirical evidence strongly suggests humans are currently ahead of AI. This may be partly because of the efficient mental shortcuts humans take when we have to make rapid decisions under uncertainty.

In the future, this may change, but we still need evidence before switching to AI. And in the immediate future, we believe that, instead of pinning humans against AI, we should combine the two. This would mean embedding AI in decision-support and analytical tools but leaving the ultimate investment decision to a human team.The Conversation

Article by Barbara Jacquelyn Sahakian, Professor of Clinical Neuropsychology, University of Cambridge; Fabio Cuzzolin, Professor of Artificial Intelligence, Oxford Brookes University, and Wojtek Buczynski, PhD candidate / consultant, University of Cambridge

This article is republished from The Conversation under a Creative Commons license. Read the original article.

Source

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

Recent Posts

  • Jeff Bezos’s representative just left the board of a startup that raised $1.4 billion on his name. The first truck has not been built.
  • Quantum Motion lands $160m in EU’s first major late-stage commitment
  • Google’s AI Overviews killed 58 per cent of publisher clicks. Now it is adding a ‘Further Exploration’ section to bring some back.
  • Snap lost a 400 million dollar AI deal, 20 million dollars a month to the Iran war, and 24 per cent of its stock price. The AR glasses had better work.
  • The UAE’s AI champion just leased a converted Minneapolis office. The irony writes itself.

Recent Comments

    Archives

    • May 2026
    • April 2026
    • March 2026
    • February 2026
    • January 2026
    • December 2025
    • September 2025
    • August 2025
    • July 2025
    • June 2025
    • May 2025
    • April 2025
    • March 2025
    • February 2025
    • January 2025
    • December 2024
    • November 2024
    • October 2024
    • September 2024
    • August 2024
    • July 2024
    • June 2024
    • May 2024
    • April 2024
    • March 2024
    • February 2024
    • January 2024
    • December 2023
    • November 2023
    • October 2023
    • September 2023
    • August 2023
    • July 2023
    • June 2023
    • May 2023
    • April 2023
    • March 2023
    • February 2023
    • January 2023
    • December 2022
    • November 2022
    • October 2022
    • September 2022
    • August 2022
    • July 2022
    • June 2022
    • May 2022
    • April 2022
    • March 2022
    • February 2022
    • January 2022
    • December 2021
    • November 2021
    • October 2021
    • September 2021
    • August 2021
    • July 2021
    • June 2021
    • May 2021
    • April 2021
    • March 2021
    • February 2021
    • January 2021
    • December 2020
    • November 2020
    • October 2020

    Categories

    • Uncategorized

    Meta

    • Log in
    • Entries feed
    • Comments feed
    • WordPress.org
    ©2026 Londonchiropracter.com | Design: Newspaperly WordPress Theme